Image Denoiser Based on Combination of Particle Filter and Curvelet Transform
Subscribe/Renew Journal
In this paper a novel Image denoising strategy is adapted that adequately consolidates a Particle Filter with Curvelet Wavelet Shrinkage to accomplish execution contrasted with other existing strategies. In particular, Particle Filter acts to smoother the rich component of noise while curvelet wavelet acts to shrink remaining segments of noise. The filter is defined by an ensemble of controlled stochastic system which is called Particles, and Curvelet Wavelet transform offers exact reconstruction, stability against perturbation. A few cases and contextual analyses are performed and it is concluded that proposed method provides better results compared to existing method and also that this method gives best performance at high noise density.
Keywords
- M. Sanjeev Arulampalam, Simon Maskell, Neil Gordon and Tim Clapp, “A Tutorial on Particle Filters for Online Nonlinear/Non-Gaussian Baysian Tracking” IEEE transaction on Signal Processing, Vol.50, No.2, February 2002
- Arnaud Doucet, Simon Godsill and Christophe Andriew, “On Sequential Monte Carlo sampling methods for Baysian filtering” Kluwer Academic Publishers, Vol.10, No.10, August, pp-197-208 .
- S. Ibrahim Sadhar, P.Y. Praveen Kumar, A.N. Rajgopalan: “Particle filters for image restoration”, National Conference on Communication (NCC04) Banglore .2004.
- Yan Zhai, Mark Yeary, Victor DeBrunner, Joseph P. Havlicek, Osama Alkhouli: “Image restoration Using using a hybrid combination of particle filtering and wavelet denoising”, IEEE ,2005
- Alexander Weber, Jurgen Weizenecker. Ulrich Heinen, Michale Heidenereich, Thorsten M. Buzug: “Reconstruction enhancement by denoising the magnetic partical imaging system matrix using frequency domain filter”, IEEE Transactions on Magnetics, vol. 51, no. 2, February 2015
- Stylianos Ploumpis, Angelos Amanatiadis, Antonios gasteratos: “A stereo matching approach based on particle filters and scattered control landmarks”,Image and Vision Computing, vol. 38, pp 13-23
- Dr. Anna Saro Vijendran, Bobby Lukose : “A new implementation of particle filter for digital noisy image”, International Conference on Intelligent Computing Application, 2014 pp 198-202.
- Manyu wang, Sheng Zheng, Xiaolong Li, Xiongjie Qin (2014): “A new image denoising method based on Gaussian filter”, IEEE International, pp 163-167.
- Aarti Pareyani, Dr. Agya Mishra: “Low contrast image enhancement using adaptive filter and DWT: a literature review”, Indian Journal of Computer Science and Engineering (IJCSE), vol. 6 pp 91-97
- Ekta Kesharwani, Dr. Agya Mishra: “Image Denoising Based on Particle Filtering: A Literature Review” Indian Journal of Computer Science and Engineering (IJCSE), vol. 7, No.-6, Nov-Dec 2016, pp-223-229
- William k. Pratt, “Digital Image Processing”, John Wiley and Sons, Inc. 2001
- S. Haykin, “Adaptive Filter Theory”, Pearson Education, 2002
- Aarti Pareyani, Dr. Agya Mishra: “Low contrast gray scale enhancement using Particle Sworm Optimization (PSO) with DWT” International journal of Computer Applications 130(8), pp-8-13, 2015.
- Petar M. Djurit, Jayesh H. Kotecha, Jainqui Zhang, Yufei Huang, Tadesse Ghirmai, Monica B. Bugallo and Joaquin Mieguez: “Particle Filtering” IEEE Signal processing magazine, pp-19-38, September 2003
- Jianwel Ma and Gerlind Plonka: “The Curvelet Transform (A Review of recent application)” IEEE Signal Processing Magazine, pp-118-133, March 2010
Abstract Views: 228
PDF Views: 3